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SRCH:D97FD772

Scaling Graph Diffusion Models and GNNs Under Adversarial Spectral Perturbations

Submitted: 2 June 2026
Review score: 8.83/10
Verification: L2, Source-grounded claims
Quality tier: Flagship candidate
Verified claims: 6
DOI: 10.5281/zenodo.20501894

Abstract

Abstract: This report synthesises findings from 13 peer-reviewed papers addressing the following research question: How does the inference throughput of graph diffusion models compare to traditional GNNs when scaling to graphs with over 100,000 nodes under adversarial spectral perturbations. Machine learning plays an increasingly important role in many areas of chemistry and materials science, being used to predict materials properties, accelerate simulations, design new structures, and predict synthesis routes of new materials. Graph neural networks (GNNs) are one. 6 claims were extracted from source literature; 6 were independently verified against retrieved documents. An automated multi-reviewer quality assessment produced a score of 8.8/10. This report is a machine-generated literature synthesis and does not constitute original research.

Research Question

How does the inference throughput of graph diffusion models compare to traditional GNNs when scaling to graphs with over 100,000 nodes under adversarial spectral perturbations?

Verification Level

Paper levelL2, Source-grounded claims
Source-grounded claims6
Claim record sourcenot publicly specified

Descriptive public verification status only; aggregate claim counts are public, but individual claim records are not exposed here.

Quality Tier

TierFlagship candidate
BasisReview score, verified-claim count, and public artifact coverage meet flagship-candidate thresholds.

Descriptive public triage only; this tier does not alter current publication or DOI behavior.

Quality Dimensions

Evidence strength MEDIUM
Citation grounding MEDIUM
Uncertainty disclosure MEDIUM
Reproducibility status HIGH

Automated triage signals derived from public fields; not human peer review or independent validation.

Correction Record

StatusCURRENT
Correction count0
Manifest contractpaper-manifest-v1.1
Correction contractcorrection-record-v1

Public corrections are additive records. Current status does not claim the synthesis is error-free.

Provenance

PublisherAssignee Research
Public provenanceL4, External archival record
Report artifactAvailable
External recordRegistered
Claim lineage6 aggregate source-grounded claims
Review methodAutomated multi-reviewer assessment
Quality guideHow to read scores, claims, manifests, and evidence links
Provenance contractsource-provenance-v1
NoteMachine-generated synthesis of existing literature. Not primary research.